Abstract

Proceedings Abstracts of the Twenty-Third International Joint Conference on Artificial Intelligence

On the Complexity of Probabilistic Abstract Argumentation / 898
Bettina Fazzinga, Sergio Flesca, Francesco Parisi

Probabilistic abstract argumentation combines Dung's abstract argumentation framework with probability theory in order to model uncertainty in argumentation. In this setting, we address the fundamental problem of computing the probability that a set of arguments is an extension according to a given semantics. We focus on the most popular semantics (i.e., admissible, stable, complete, grounded, preferred, ideal), and show the following dichotomy result: computing the probability that a set of arguments is an extension is either PTIME or FP#P-complete depending on the semantics adopted. Our PTIME results are particularly interesting, as they hold for some semantics for which no polynomial-time technique was known so far.